Hadoop application architectures
Author(s)
Bibliographic Information
Hadoop application architectures
O'Reilly, 2015
- Other Title
-
Hadoop application architectures : designing real-world big data applications
Available at 2 libraries
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  Iwate
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  Nara
  Wakayama
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  Hiroshima
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  Tokushima
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  Ehime
  Kochi
  Fukuoka
  Saga
  Nagasaki
  Kumamoto
  Oita
  Miyazaki
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  Okinawa
  Korea
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  United Kingdom
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Note
Other authors: Ted Malaska, Jonathan Seidman, Gwen Shapira
Includes index
Description and Table of Contents
Description
Get expert guidance on architecting end-to-end data management solutions with Apache Hadoop. While many sources explain how to use various components in the Hadoop ecosystem, this practical book takes you through architectural considerations necessary to tie those components together into a complete tailored application, based on your particular use case. To reinforce those lessons, the book's second section provides detailed examples of architectures used in some of the most commonly found Hadoop applications. Whether you're designing a new Hadoop application, or planning to integrate Hadoop into your existing data infrastructure, Hadoop Application Architectures will skillfully guide you through the process.This book covers: Factors to consider when using Hadoop to store and model data Best practices for moving data in and out of the system Data processing frameworks, including MapReduce, Spark, and Hive Common Hadoop processing patterns, such as removing duplicate records and using windowing analytics Giraph, GraphX, and other tools for large graph processing on Hadoop Using workflow orchestration and scheduling tools such as Apache Oozie Near-real-time stream processing with Apache Storm, Apache Spark Streaming, and Apache Flume Architecture examples for clickstream analysis, fraud detection, and data warehousing
by "Nielsen BookData"